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arxiv: 2101.05307 · v2 · pith:EBLGS6KMnew · submitted 2021-01-13 · 💻 cs.CV · cs.AI· cs.LG· cs.RO

Explainability of deep vision-based autonomous driving systems: Review and challenges

classification 💻 cs.CV cs.AIcs.LGcs.RO
keywords explainabilityself-drivingsystemsdrivingseveralapplicationautonomouschallenges
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This survey reviews explainability methods for vision-based self-driving systems trained with behavior cloning. The concept of explainability has several facets and the need for explainability is strong in driving, a safety-critical application. Gathering contributions from several research fields, namely computer vision, deep learning, autonomous driving, explainable AI (X-AI), this survey tackles several points. First, it discusses definitions, context, and motivation for gaining more interpretability and explainability from self-driving systems, as well as the challenges that are specific to this application. Second, methods providing explanations to a black-box self-driving system in a post-hoc fashion are comprehensively organized and detailed. Third, approaches from the literature that aim at building more interpretable self-driving systems by design are presented and discussed in detail. Finally, remaining open-challenges and potential future research directions are identified and examined.

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